Abstract:
Concepts are building blocks of human thinking. For machines, concept understanding has also been increasingly important, which makes concept representation a fundamental...Show MoreMetadata
Abstract:
Concepts are building blocks of human thinking. For machines, concept understanding has also been increasingly important, which makes concept representation a fundamental problem in artificial intelligence. While many concepts have their instances, the massive amount of information carried by instances has long been ignored in current concept representation, which limits the usage of these concepts in applications. In this paper, inspired by prototype theory in cognitive science, we propose prototypical concept representation for machines, which represents each concept with a distributed prototype derived from representations of its instances. For prototypical representation learning, we further introduce a novel model named Prototypical Siamese Network (PSN). PSN is trained under the supervision of isA determination, one of the most important concept-related applications. Results of extensive experiments demonstrate that, our method achieves state-of-the-art performance, thus validating the effectiveness of prototypical concept representation.
Published in: IEEE Transactions on Knowledge and Data Engineering ( Volume: 35, Issue: 7, 01 July 2023)
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- IEEE Keywords
- Index Terms
- Conceptual Representations ,
- Scientific Knowledge ,
- Representation Learning ,
- Siamese Network ,
- Quintessential Example ,
- Prototypical Network ,
- Training Set ,
- Scoring Function ,
- Vector Space ,
- Head And Tail ,
- Textual Descriptions ,
- Penguins ,
- Context-aware ,
- Number Of Concepts ,
- Natural Language Processing Tasks ,
- Instances Of Type ,
- Link Prediction ,
- Sequence Of Tokens ,
- Pre-trained Language Models ,
- Hypernym ,
- Mahjong ,
- Text Encoder ,
- Semantic Matching ,
- Benchmark Tasks ,
- Electronic Games ,
- Loss Function ,
- Inference Rules ,
- Time Complexity ,
- Limited Computational Resources
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Conceptual Representations ,
- Scientific Knowledge ,
- Representation Learning ,
- Siamese Network ,
- Quintessential Example ,
- Prototypical Network ,
- Training Set ,
- Scoring Function ,
- Vector Space ,
- Head And Tail ,
- Textual Descriptions ,
- Penguins ,
- Context-aware ,
- Number Of Concepts ,
- Natural Language Processing Tasks ,
- Instances Of Type ,
- Link Prediction ,
- Sequence Of Tokens ,
- Pre-trained Language Models ,
- Hypernym ,
- Mahjong ,
- Text Encoder ,
- Semantic Matching ,
- Benchmark Tasks ,
- Electronic Games ,
- Loss Function ,
- Inference Rules ,
- Time Complexity ,
- Limited Computational Resources
- Author Keywords